expert domains for a query category represent domains from which a high percentage of search results for queries associated with the query category are retrieved. The expert domains are identified by establishing a base statistical model that indicates frequencies of appearance for domains in search results retrieved for queries corresponding to multiple categories. In addition, frequencies of domain appearance are determined for search results retrieved for queries associated with a category. domains that appear more frequently in the search results corresponding to the category are identified as expert domains for the category. A user may be allowed to customize expert domains related to one or more categories by adding or removing expert domains for the category.
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1. A method for identifying an expert network domain for a query, the method comprising:
maintaining a query ontology that includes one or more query categories and one or more queries associated with each of the one or more categories, the one or more queries associated with a particular category included in the query ontology representing queries associated with that particular category;
retrieving search results for queries included in the query ontology;
determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries included in the query ontology generally was identified;
retrieving search results for queries associated with a category included in the query ontology;
determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries associated with the category was identified;
comparing the frequency of occurrence in the search results for the queries associated with the category to the frequency of occurrence in the search results for the queries included in the query ontology generally for each network domain from which one of the search results for the queries associated with the category was identified;
identifying, as expert network domains for the category, one or more network domains from which search results are identified more frequently in the search results for the queries associated with the category than in the search results for the queries included in the query ontology generally; and
storing, in electronic storage, data indicating that the identified one or more network domains are expert network domains for the category.
12. A machine-accessible medium that when accessed, results in a machine performing operations for identifying an expert network domain for a query, comprising:
maintaining a query ontology that includes one or more query categories and one or more queries associated with each of the one or more categories, the one or more queries associated with a particular category included in the query ontology representing queries associated with that particular category;
retrieving search results for queries included in the query ontology;
determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries included in the query ontology generally was identified;
retrieving search results for queries associated with a category included in the query ontology;
determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries associated with the category was identified;
comparing the frequency of occurrence in the search results for the queries associated with the category to the frequency of occurrence in the search results for the queries included in the query ontology generally for each network domain from which one of the search results for the queries associated with the category was identified;
identifying, as expert network domains for the category, one or more network domains from which search results are identified more frequently in the search results for the queries associated with the category than in the search results for the queries included in the query ontology generally; and
storing, in electronic storage, data indicating that the identified one or more network domains are expert network domains for the category.
20. A system for identifying an expert network domain for a query, the system comprising:
means for maintaining a query ontology that includes one or more query categories and one or more queries associated with each of the one or more categories, the one or more queries associated with a particular category included in the query ontology representing queries associated with that particular category;
means for retrieving search results for queries included in the query ontology;
means for determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries included in the query ontology generally was identified;
means for retrieving search results for queries associated with a category included in the query ontology;
means for determining a frequency of occurrence in the retrieved search results for each network domain from which one of the search results for the queries associated with the category was identified;
means for comparing the frequency of occurrence in the search results for the queries associated with the category to the frequency of occurrence in the search results for the queries included in the query ontology generally for each network domain from which one of the search results for the queries associated with the category was identified;
means for identifying, as expert network domains for the category, one or more network domains from which search results are identified more frequently in the search results for the queries associated with the category than in the search results for the queries included in the query ontology generally; and
means for storing, in electronic storage, data indicating that the identified one or more network domains are expert network domains for the category.
2. The method of
3. The method of
receiving a query from a user;
associating variations of the received query with the category; and
presenting one or more expert network domains associated with the category for the user.
4. The method of
5. The method of
6. The method of
7. The method of
comparing the frequency of occurrence of a network domain in the search results for the queries included in the query ontology to the frequency of occurrence of the network domain in the search results for the queries included in the category;
identifying a weighting factor for the network domain based on results of the comparison of the frequencies; and
identifying as the expert network domains one or more network domains with weighting factors that exceed a threshold weighting factor, or identifying as the expert network domains a particular number of network domains with the highest weighting factors.
8. The method of
submitting each of the queries included in the query ontology to a search engine; and
receiving search results for each of the submitted queries from the search engine.
9. The method of
submitting each of the queries associated with the category to a search engine; and
receiving search results for each of the submitted queries from the search engine.
10. The method of
11. The method of
13. The machine-accessible medium of
14. The machine-accessible medium of
receiving a query from a user;
associating variations of the received query with the category; and
presenting one or more expert network domains associated with the category for the user.
15. The machine-accessible medium of
16. The machine-accessible medium of
17. The machine-accessible medium of
18. The machine-accessible medium of
comparing the frequency of occurrence of a network domain in the search results for the queries included in the query ontology to the frequency of occurrence of the network domain in the search results for the queries included in the category;
identifying a weighting factor for the network domain based on results of the comparison of the frequencies; and
identifying as the expert network domains one or more network domains with weighting factors that exceed a threshold weighting factor, or identifying as the expert network domains a particular number of network domains with the highest weighting factors.
19. The machine-accessible medium of
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This application is related to U.S. patent application Ser. No. 11/023,651 filed Dec. 29, 2004, and titled “Query Routing”, U.S. patent application Ser. No. 11/023,643 filed Dec. 29, 2004, and titled “Query Disambiguation”, U.S. patent application Ser. No. 11/023,642 filed Dec. 29, 2004, and titled “Search Fusion”, U.S. patent application Ser. No. 11/023,645 filed Dec. 29, 2004, and titled “Query Reformulation”, and U.S. patent application Ser. No. 11/023,633 filed Dec. 29, 2004, and titled “Filtering Search Results”, all of which are incorporated by reference.
This document relates to retrieving and presenting search results for search queries.
Conventional search engines retrieve a set of search results that correspond to a search query. Some search results may direct a user to Internet resources that do not interest the user, even though the search results match the search query. For example, this issue may arise when a query relates to multiple different topics, one or more of which being of little or no interest to the query submitter, in which case search results are produced that are representative of each of the different topics.
In one general aspect, identifying an expert domain for a query includes maintaining a query ontology that includes one or more query categories and one or more queries associated with each of the one or more categories. The one or more queries associated with a particular category included in the query ontology represent queries associated with that particular category. Search results are retrieved for queries included in the query ontology. A frequency of occurrence in the retrieved search results is determined for each domain from which one of the search results for the queries included in the query ontology generally was identified. Search results are retrieved for queries associated with a category included in the query ontology, and a frequency of occurrence in the retrieved search results is determined for each domain from which one of the search results for the queries associated with the category was identified. The frequency of occurrence in the search results for the queries associated with the category is compared to the frequency of occurrence in the search results for the queries included in the query ontology generally for each domain from which one of the search results for the queries associated with the category was identified. One or more domains from which search results are identified more frequently in the search results for the queries associated with the category than in the search results for the queries included in the query ontology generally are identified as expert domains for the category.
Implementations may include one or more of the following features. For example, the identified expert domains may be associated with the category in the query ontology. A query may be received from a user. Variations of the received query may be associated with the category, and one or more expert domains associated with the category may be presented for the user. Upon user selection of one of the expert domains, expert search results for the received query may be retrieved from the selected expert domain.
Determining a frequency of occurrence in the retrieved search results for each domain from which one of the search results for the queries included in the query ontology was identified may include determining a number of the retrieved search results that were identified from the domain. Determining a frequency of occurrence in the retrieved search results for each domain from which one of the search results for the queries included in the category was identified may include determining a number of the retrieved search results that were identified from the domain.
Determining a frequency of occurrence in the retrieved search results for each domain from which one of the search results for the queries included in the query ontology was identified may include determining a probability that the one of the retrieved search results was identified from the domain. Determining a frequency of occurrence in the retrieved search results for each domain from which one of the search results for the queries included in the category was identified may include determining a probability that one of the retrieved search results was identified from the domain.
The frequency of occurrence of a domain in the search results for the queries included in the query ontology may be compared to the frequency of occurrence of the domain in the search results for the queries included in the category. A weighting factor for the domain may be identified based on results of the comparison of the frequencies. One or more domains with weighting factors that exceed a threshold weighting factor may be identified as the expert domains. A particular number of domains with the highest weighting factors may be identified as the expert domains.
Retrieving search results for the queries included in the query ontology may include submitting each of the queries included in the query ontology to a search engine, and receiving search results for each of the submitted queries from the search engine. Retrieving search results for the queries associated with a category included in the query ontology may include submitting each of the queries associated with the category to a search engine, and receiving search results for each of the submitted queries from the search engine.
Retrieving search results for the queries included in the query ontology may include retrieving a subset of the search results. Retrieving search results for queries associated with a category included in the query ontology may include retrieving a subset of the search results.
A user may be enabled to delete one or more of the identified expert domains and to add one or more additional expert domains to the identified expert domains.
These general and specific aspects may be implemented using a system, a method, or a computer program, or any combination of systems, methods, and computer programs.
Other features will be apparent from the description and drawings, and from the claims.
Like reference symbols in the various drawings indicate like elements.
Expert domains for a query category represent domains from which a high percentage of search results for queries associated with the query category are retrieved. The expert domains are identified by establishing a base statistical model that indicates frequencies of appearance for domains in search results retrieved for queries corresponding to multiple categories. In addition, frequencies of domain appearance are determined for search results retrieved for queries associated with a category. Domains that appear more frequently in the search results corresponding to the category are identified as expert domains for the category. A user may be allowed to customize expert domains related to one or more categories by adding or removing expert domains for the category.
Referring to
The client system 105 includes one or more communications programs that may be used by the user to submit search queries for the particular Internet resources to the search interface 110. The communications programs may include a web browser, an e-mail program, an instant messaging program, a file transfer protocol (FTP) program, or another communications program. The client system 105 also may include one or more input devices, such as a keyboard, a mouse, a stylus, a camera, or a microphone, with which the user may specify the search queries. The client system 105 also includes one or more output devices, such as a monitor, a touch screen, speakers, or a printer, with which search results for the search queries from the search interface 110 may be presented to the user. The search results may be indications of Internet resources that match the search queries, or the matching Internet resources themselves. The client system 105 also may be configured to communicate with other components of the networked computing environment 100.
The search interface 110 receives queries specified by the user from the client system 105. The search interface 110 may modify the queries and may submit the queries to particular ones of the search engines 115a-115n in order to retrieve search results for the received queries that represent search results desired by the user. For example, the search interface 110 may identify a query category among multiple query categories that corresponds to a received query as a query category that the user intended for the received query. The query may be disambiguated such that the query corresponds only to the intended category. In addition, the query may be reformulated with one or more keywords typically found in search results for queries of the intended category. Furthermore, the search interface 110 may submit the received query only to particular ones of the search engines 115a-115n that typically return search results for queries of the intended category. Modifying the received query and submitting the received query only to particular ones of the search engines 115a-115n based on the intended category of the query cause search results that are retrieved for the received query to be representative of the intended category.
The search interface 110 also may assign or associate scores to the search results retrieved for the received query. The assigned scores may be based on visual characteristics of surrogate representations of the search results that are received from the search engines 115a-115n. The search interface 110 also may sort or filter the search results based on the assigned scores such that search results that are most or least relevant to the received query made known to the client system 105 and/or such that the most or least relevant are filtered out or through for presentation to the user.
The search engines 115a-115n identify Internet resources that match a query that has been received from the search interface 110. The search engines 115a-15n may identify the matching Internet resources using one or more databases that include indexes of Internet resources. The indexes may include keywords or descriptions of Internet resources that are matched against the received query. If the keywords or description for an Internet resource matches the search query, then the Internet resource is identified as a search result for the received query. The search engines 115a-115n may be configured to match the received query against all possible Internet resources indexed in the databases, or against the Internet resources indexed in the databases that are from a particular source. Furthermore, the search engines 115a-115n may be specialized such that the databases for one of the search engines 115a-115n index only particular Internet resources. For example, the search engine 115a may be a search engine that is specialized for cars such that the search engine 115a indexes only Internet resources that are related to cars.
The ontology 125, which also may be called a query ontology, relates search queries to categories of search queries. The ontology 125 may categorize a very large number of search queries into a relatively small number of categories of search queries. The ontology 125 also may identify one or more keywords for each of the categories of search queries. The keywords for a category may represent words or phrases that appear in a high percentage of search results for queries corresponding to the category. In some implementations, the ontology 125 may identify one or more expert domains for each of the categories of search queries, which represent domains from which a high percentage of search results for queries corresponding to each particular category are identified. The structure of the ontology 125 will be described in further detail with respect to
The ontology engine 120 is an interface to the ontology 125 that is accessed by the search interface 110. The ontology engine 120 receives a query from the search interface 110 and identifies one or more categories from the ontology 125 that correspond to the received query. More particularly, the ontology engine 120 searches for the query in the ontology 125 and returns the one or more categories from the ontology 125 in which the query is found. In addition, the ontology engine 120 may return keywords associated with the one or more categories corresponding to the query, as indicated by the ontology 125.
The source selection module 130 identifies one or more expert domains that may be used to identify appropriate search results for search queries. More particularly, the source selection module 130 receives a query from the search interface 110 and identifies one or more expert domains that may be used to identify appropriate search results for the received query. Such an identification may be made by first identifying one or more categories for the received query using the ontology 125 and the ontology engine 120, and then identifying one or more expert domains corresponding to the identified categories. As a result, the source selection module 130 may relate query categories to expert domains that are appropriate for the query categories. In implementations where the ontology 125 identifies expert domains for the categories included in the ontology 125, the source selection module 130 may be included in the ontology engine 120. In such implementations, the source selection module 130 may identify expert domains for queries based on information included in the ontology 125.
The network 135 may be a network that connects the components of the networked computing environment 100, such as the Internet, the World Wide Web, wide area networks, (WANs), local area networks (LANs), analog or digital wired and wireless telephone networks (e.g. a public switched telephone network (PSTN), an integrated services digital network (ISDN), or a digital subscriber line (xDSL)), radio, television, cable, satellite, and/or any other delivery mechanism for carrying data. The components of the networked computing environment 100 are connected to the network 135 through communications pathways that enable communications through the network 135. Each of the communication pathways may include, for example, a wired, wireless, cable or satellite communication pathway, such as a modem connected to a telephone line or a direct internetwork connection. The components of the networked computing system 100 may use serial line internet protocol (SLIP), point-to-point protocol (PPP), or transmission control protocol/internet protocol (TCP/IP) to communicate with one another over the network 135 through the communications pathways.
Each of the components of the networked computing environment 100 may be implemented using, for example, a general-purpose computer capable of responding to and executing instructions in a defined manner, a personal computer, a special-purpose computer, a workstation, a server, a device, a component, or other equipment or some combination thereof capable of responding to and executing instructions. The components may receive instructions from, for example, a software application, a program, a piece of code, a device, a computer, a computer system, or a combination thereof, which independently or collectively direct operations, as described herein. The instructions may be embodied permanently or temporarily in any type of machine, component, equipment, storage medium, or propagated signal that is capable of being delivered to the components.
Further, each of the components of the networked computing environment 100 includes a communications interface used send communications through network 110. The communications may include, for example, e-mail messages, instant messages, audio data, video data, general binary data, or text data (e.g., encoded in American Standard Code for Information Interchange (ASCII) format).
Referring to
When a first category appears above a second category in the ontology 125, the first category may be referred to as a parent category of the second category, and the second category may be referred to as a child category of the first category. For example, in relative terms, the science category 205d is a parent category, and the categories 205g-205k are children categories of the science category 205d. In general, an arrow directly from a first category to a second category indicates that the first category is a parent category of the second category. More generally, one or more arrows from a first category to a second category through one or more intermediate categories indicate that the first category is an ancestor category of the second category, and that the second category is a child category of the first category.
A parent category includes queries that are more general than queries included in a child category of the parent category. For example, the science category 205d is more general than the children categories 205g-205k, which include the physics category 205g, the chemistry category 205h, the animals category 205i, the astronomy category 205j, and the biology category 205k. Queries associated with a particular category may be referred to as corresponding to the particular category, as well as to other categories included in the ontology 125 that are ancestor or child categories of the particular category. Furthermore, categories that are ancestor or child categories of a category that includes a particular query may be referred to as corresponding to the particular query. In the implementation of the ontology 125 illustrated in
In some implementations, some of the categories 205a-205z are not associated with keywords or expert domains. In such implementations, keywords and expert domains for those categories may be keywords and expert domains associated with one or more ancestor or child categories of those categories. For example, if no keywords and expert domains are associated with the reptile category 205q, keywords and expert domains from the animals category 205i, the science category 205d, or the root category 205a may be used for the reptile category 205q. When keywords and expert domains are associated with a child category of ancestor category, keywords and expert domains from the ancestor category may be used in place of, or in addition to, the keywords and the expert domains for the child category.
In other implementations of the ontology 125, the categories 205a-205z are not arranged as nodes in a directed acyclic graph such that relationships do not exist between the categories 205a-205z. As a result, keywords and expert domains for a query may be identified only from a category with which the query is associated. In such implementations, keywords, and expert domains may associated with all of the categories 205a-205z.
The categories 205m and 205y may be associated with keyword lists 315a and 315b. The keywords included in the keyword list 315a represent words or phrases that appear in a high percentage of search results for the queries included in the query list 310a. Similarly, the keywords included in the keyword list 315b represent words that frequently appear in search results for the queries included in the query list 310b. In this example, the keyword list 310a includes the keywords “bird,” “nest,” “egg,” “beak,” and “talon,” and the keyword list 310b includes the keywords “football,” “game,” “coach,” “quarterback,” and “receiver.” The keywords included in the keyword lists 315a and 315b may be identified through execution of a process that will be described with respect to
The categories 205m and 205y also may be associated with expert domain lists 320a and 320b. The expert domains included in the expert domain list 320a represent domains from which a high percentage of search results for the queries included in the query list 310a are retrieved. Similarly, the expert domains included in the expert domain list 320b represent domains from which a high percentage of search results for the queries included in the query list 310b are retrieved. In this example, the expert domain list 320a includes the domains “www.hbw.com,” “birdingonthe.net,” “home.planet.nl,” “www.mangoverde.com,” “www.camacdonald.com,” “www.birdforum.net,” “www.bird-stamps.org,” “www.phthiraptera.org,” “www.scricciolo.com,” and “www.birdlife.net,” and the domain list 320b includes the domains “www.nfl.com” and “www.football.com.” The expert domains included in the expert domain lists 320a and 320b may be identified through execution of a process that will be described with respect to
Both of the query lists 315a and 315b include a query that includes the word “eagle.” As a result, when a query that includes the word “eagle” is received, for example, from the client system 105 of
Referring to
The process 400 begins when the search interface receives a query from a user (405). The search interface is accessed by a user of a client system, such as the client system 105 of
The search interface resolves the received query when the received query ambiguously corresponds to multiple query categories (410). The query categories are indicated by a query ontology, such as the query ontology 125 of
The search interface then supplements the resolved query with keywords associated with the single query category corresponding to the resolved query (415). The keywords may be associated with the single category in the query ontology. The keywords represent words or phrases that are found in a high percentage of search results for queries associated with the single category in the query ontology. The keywords are identified and associated with the single category with a process such as that described below with respect to
The search interface routes the supplemented query to one or more search engines corresponding to the supplemented query (420). More particularly, the supplemented query is submitted to one or more search engines that correspond to the single category in the query ontology corresponding to the supplemented query. The search engines to which the supplemented query is submitted represent search engines from which a high percentage of search results for queries associated with the single category are retrieved. The search engines are identified and associated with the single category using, for example, a process described below with respect to
Search results for the received query are received from each of the one or more search engines, and the search interface assigns scores to the received search results (425). Each of the one or more search engines provides surrogate representations of the search results to the search interface. A surrogate representation of a search result is a relatively short summary or excerpt of the search result that may be presented in place of the search results itself. The search interface then assigns scores to the search results based on visual characteristics of the surrogate representations of the search results. An example of assigning scores to the received search results is described in further detail with respect to process 425 of
The search interface filters the search results based on the assigned scores (430). More particularly, differences between scores assigned to the search results are used to identify search results that should be filtered. In general, large differences in scores indicate that search results should be eliminated. The search results that are not eliminated represent high quality search results for the query originally received from the user, though they may themselves be sorted based upon the scores. Filtering the search results based on the assigned scores is described in further detail with respect to exemplary process 430 of
The search interface makes the filtered search results perceivable to the user of the client system (435). More particularly, the search interface sends the surrogate representations of the search results that have not been eliminated to the client system, and the client system presents the surrogate representations to the user.
Particular implementations of the process 400 may include only a subset of the operations 410-430. For example, in one implementation, the search results may not be filtered prior to being presented to the user. In another implementation, the query may not be supplemented with keywords prior to being submitted to the one or more search engines. In another implementation, the query may be submitted to all available search engines, instead of only to the search engines associated with the category of the query. In yet another implementation, the query may not be resolved, particularly when the query originally corresponds to only one category in the query ontology.
Referring to
The search interface identifies one or more categories corresponding to a received query in an ontology (505). The ontology may be the ontology 120 of
The search interface determines whether the received query corresponds to multiple categories (510). In other words, the search interface 510 determines whether an indication of multiple categories from the ontology that correspond to the received query is received from the ontology engine.
If so, the received query is resolved such that the received query corresponds to only one of the multiple categories (515). More particularly, the search interface selects one of the multiple identified categories (515). In one implementation, selecting the multiple identified categories includes enabling a user that specified the received query to select one of the multiple categories. For example, indications of the multiple categories may be presented to the user on a user interface with which the query was specified. The user may select one of the indications, and the search interface selects the corresponding category as the category to which the query should be resolved.
In another implementation, the search interface may use characteristics of the received query to select one of the multiple identified categories. For example, the search interface may identify one or more categories from the ontology that correspond to a portion of the received query. The categories corresponding to the portion of the received query may be identified in a manner similar to how the categories corresponding to the entire received query were identified. The portion of the received query may correspond to a single category, and the single category may be one of the multiple categories. In such a case, the single category is selected as the category to which the received query should be resolved. For example, the query “eagles receiver” may correspond to a football category and an animals category, while the “receiver” portion of the query may correspond to a football category and an electronics category. The football category may be selected as the category to which the query should be resolved because both the full query and the portion of the query correspond to the football category.
In another implementation, the search interface may use characteristics of the multiple identified categories to select one of the multiple identified categories. For example, an indication of a number of times each of the multiple identified categories has been selected may be maintained, and the one of the multiple categories that has been selected most often may be selected. Other indications of the popularity or appropriateness of the multiple identified categories may be used to select one of the multiple identified categories for the received query. In some implementations, a combination of enabling the user to select one of the multiple categories, identifying categories corresponding to a portion of the query, and identifying characteristics of multiple categories corresponding to the received query may be used to select a category for the received query.
The search interface supplements the query with information associated with or identifying the selected category (520). Supplementing the query with information associated with or identifying the selected category may include formatting the query into a canonical form of the received query for the selected category. The canonical form of the entered query for the selected category is a query associated with the selected category that matches the entered query. When the query does not exactly match a query associated with the selected category, then the canonical form of the query differs from the query. For example, the query “eagles” matches the query “Philadelphia Eagles,” which is associated with the football category. Consequently, “Philadelphia Eagles” may be the canonical form of the query “eagles” for the football category.
Alternatively or additionally, the query may be supplemented with one or more keywords associated with the selected category. The keywords represent words or phrases found in a high percentage of search results for queries associated with the selected category. The keywords may be associated with the selected category in the ontology. The query may be supplemented with the keywords such that search results retrieved for the supplemented query include at least one of the keywords.
Supplementing the received query may include reformulating the received query to adhere to a syntax in which queries may be submitted to a search engine to which the supplemented query will be submitted eventually. Each search engine to which the supplemented query may be submitted accepts queries in a particular format, and the query may be reformulated to reflect the particular format of the search engine to which the supplemented query will be submitted. The received query may be supplemented such that the user does not authorize supplementing the query with the associated information, or such that the user does not perceive the supplemented query.
Supplementing the query with the information causes the query to correspond to only the selected category. In other words, supplementing the query resolves the query to the selected category. As a result, the search engine returns the resolved query (525). The returned query may be processed further, or the returned query may be submitted to one or more search engines to retrieve search results for the returned query. If the received query does not correspond to multiple categories in the ontology (510), the received query, by default, corresponds to a single category. As a result, the received query does not need to be resolved and simply may be returned (525).
In some implementations, the categories included in the ontology are arranged as nodes in a directed acyclic graph, as illustrated in
Referring to
Referring to
The category identifiers 710a-710c indicate that the search query corresponds to multiple categories in the ontology 125. For example, one of the queries corresponding to a musicians category in the ontology 125 matches the search query, as indicated by the category identifier 710a. In addition, the category identifier 710b indicates that a query corresponding to a football category in the ontology 125 matches the search query, and the category identifier 710b indicates that a query corresponding to a bird category in the ontology 125 matches the search query.
The category identifiers 710a-710c also may indicate canonical forms of the query entered in the text field 605 for the corresponding category. The canonical form of the entered query for a particular category is a query associated with the particular category that matches the entered query. For example, the entered query matches the query “The Eagles” that is associated with the musicians category, so “The Eagles” is the canonical form of the entered query for the musicians category. Similarly, “Philadelphia Eagles” is the canonical form of the entered query for the football category, and “eagles” is the canonical form of the entered query for the bird category.
The search results 705a-705e represent search results that were retrieved for the search query before the search query was disambiguated. In other words, the search results 705a-705e were retrieved for the search query before the search query was supplemented with information associated with a category from the ontology 125 that the user intended for the search query. As a result, the search results 705a-705e represent search results that are representative of the multiple categories. For example, the search results 705a and 705c are representative of the musicians category, the search result 705b is representative of the football category, and the search results 705d and 705e are representative of the bird category.
One of the category identifiers 710a-710c may be selected by the user to indicate that the corresponding category was intended for the search query. For example, the user may select the category identifier 710a to retrieve search results relating only to musicians that match the search query. The user may select the category identifier 710b to retrieve search results relating only to football that match the search query, and the user may select the category identifier 710c to retrieve search results relating only to birds that match the search query. Moreover, a user interface may enable selection of more than one category, in response to which results corresponding to each selected category may be interpreted seamlessly or visually distinguished through a visual indicator or screen position.
Referring to
As a result of the disambiguation of the query by supplementing the query with information associated with the musicians category, the search results 805a-805e are all representative of the musicians category. More particularly, the search results 805a-805e represent Internet resources that match the supplemented query, which is representative of only the musicians category in the query ontology 125. Therefore, the search results 805a-805e all relate to musicians named “The Eagles.”
The indicators 810-820 identify steps taken to retrieve the search results 805a-805e, which are representative of only one query category. More particularly, the indicators 8210-820 identify the original query, the categories to which the original query corresponds, and the category to which the original query has been resolved. The indicators 810-820 may allow navigation through the steps such that the original query may be disambiguated in different manner, or such that search results may be retrieved without first disambiguating the original query.
The original query indicator 810 identifies the query that was originally submitted before the query was disambiguated. For example, the query indicator 810 indicates that the original query was “eagles,” because that query was entered in the text field 605 of
The selected category indicator 815 identifies a category to which the query was resolved. More particularly, the selected category indicator 815 identifies one of the multiple categories to which the original query corresponds whose corresponding category identifier was selected. For example, the selected category indicator 815 indicates that the original query has been resolved to the musicians category as a result of the category indicator 710a of
The available category indicator 820 identifies others of the multiple categories to which the original query corresponds whose corresponding category identifiers were not selected. For example, the available category indicator 820 indicates that the original query was not resolved to the football category or to the birds category because the corresponding category indicators 710b and 710c of
In other implementations of the search tool user interface 600 of
Referring to
The search interface identifies a category corresponding to a received query in an ontology (905). The category corresponding to the received query may be identified in a manner similar to the process 410 of
The search interface identifies one or more keywords associated with the identified category (910). The keywords represent words or phrases found in a high percentage of search results for queries associated with the selected category. In one implementation, the keywords are associated with the selected category in the ontology, as illustrated in
The search interface supplements the received query with the identified keywords (915). The query may be supplemented with the keywords such that search results retrieved for the supplemented query include at least one of the keywords. Supplementing the query with the keywords increases the chances that search results retrieved for the supplemented query are representative of the identified category. A high percentage of search results for queries of the identified category include the keywords, so search results that include one or more of the keywords are likely to be representative of the identified category. In one implementation, prior to supplementing the query with the identified keywords, the identified keywords may be presented to the user such that the user may select which of the identified keywords will be used to supplement the received query. The supplemented query may be reformulated to adhere to a syntax in which queries may be submitted to a search engine to which the supplemented query will be submitted. The received query may be supplemented such that the user does not authorize supplementing the query with the keywords, or such that the user does not perceive the supplemented query.
Maintaining keywords for query categories may be more advantageous than maintaining keywords for individual queries, particularly when the number of categories is significantly smaller than the number of individual queries. Maintaining keywords for query categories instead of for individual queries reduces the storage space required for the keywords.
Referring to
The search results 1005a-1005e are representative of the bird category of the ontology 125 because the query entered in the text field 605 has been supplemented with keywords associated with the bird category. The keywords may be added to the query as a result of the query corresponding only to the bird category, or as a result of the selection of the category identifier 710c of
The keywords with which the query has been supplemented may or may not be made perceivable to the user from which the query was received. As a result, the query may or may not be modified within the text field 605, though the query has been modified within the text field in the illustrated search tool user interface 600.
Referring to
The process 1100 begins when an ontology that relates queries to query categories is maintained and/or accessed (1105). For example, an ontology that is similar to the ontology 125 of
The ontology engine submits queries associated with categories included in the ontology to one or more search engines (1110). In one implementation, all queries included in the ontology are submitted to the one or more search engines. In another implementation, a particular number of queries from each of the categories included in the ontology are submitted to the one or more search engines. In general, any number of queries included in the ontology may be submitted, particularly if the submitted queries evenly represent the categories included in the ontology.
Furthermore, in some implementations, the queries may be submitted to all available search engines or to a subset of the available search engines. For example, the queries may be submitted to a general search engine from which many types of search results may be retrieved. Alternatively, the queries may be submitted to multiple search engines from which specialized types of search results may be retrieved. As another example, the queries may be submitted both to general and specialized search engines. In general, the queries may be submitted to any set of search engines, particularly if different types of search results may be retrieved evenly from the search engines. Search results for the submitted queries are received from the one or more search engines to which the queries were submitted (1115).
The ontology engine determines a frequency of occurrence in the received search results for each word that appears in the received search results (1120). The ontology engine also may determine a frequency of occurrence in the received search results for one or more phrases that appear in the received search results. Determining the frequency of occurrence for a word or a phrase may include determining a probability that the word or the phrase appears in one of the received search results. Such a probability may be defined as the ratio of the number of the received search results that include the word or the phrase to the number of the received search results. Alternatively, determining the frequency of occurrence for a word or a phrase may include determining a number of the received search results that include the word or the phrase. In one implementation, the frequencies of occurrence for the words or the phrases appearing in the received search results may be determined using only a subset of the retrieved search results. For example, a particular number of the search results that most closely match each of the submitted queries may be used to determine the frequencies.
The determined frequencies of occurrence represent a base statistical model of word or phrase frequency from a random or general collection of search results. The determined frequencies will be compared to frequencies determined for search results for queries from a particular category in the query ontology. Words or phrases with higher frequencies in search results for queries from the particular category will be identified as keywords for the particular category.
The ontology engine then selects a category from within the ontology (1125). The ontology engine submits queries associated with the selected category to one or more search engines (1130). Some or all of the queries associated with the selected category may be submitted to the one or more search engines. The queries may be submitted to the same search engines to which the queries from the categories were previously submitted. Search results for the submitted queries from the selected category are received from the one or more search engines (1135).
The ontology engine determines a frequency of occurrence in the search results received for the submitted queries from the selected category for each word that appears in the received search results (1140). The ontology engine also may determine a frequency of occurrence in the received search results for one or more phrases that appear in the received search results. The frequencies may be determined in a manner similar to how the frequencies were previously determined using search results received for the queries included in the ontology.
For each word that appears in the received search results, the ontology engine compares the frequency of occurrence in the search results for the queries from the selected category to the frequency of occurrence in the search results for the queries from the categories (1145). The ontology engine also may compare the frequencies of occurrence for the phrases that appear in the received search results. In general, comparing the two frequencies for a particular word or phrase indicates whether the particular word or phrase appears more frequently in the search results for the queries from the selected category. Comparing the two frequencies also may indicate whether the particular word or phrase appears with relatively equal frequency in both the search results for the queries from the selected category and the search result for the queries from the categories. Comparing the two frequencies may include identifying a weighting factor for the word or the phrase. The weighting factor indicates the relative difference between the two frequencies. In one implementation, a high weighting factor may indicate that the word or the phrase occurs more frequently in the search results for the queries from the selected category than in the search results for the queries from the categories. On the other hand, a low weighting factor may indicate that the word or the phrase does not occur more frequently in the search results for the queries from the selected category than in the search results for the queries from the categories.
Words that appear more frequently in the search results for the queries from the selected category of the query ontology are identified as keywords for the selected category (1150). In addition, one or more phrases that appear more frequently in the search results for the queries from the selected category of the query ontology may be identified as keywords for the selected category. The identification of the keywords may be based on the weighting factors of the words or the phrases that appear in the received search results. In one implementation, a particular number of words or phrases with the highest weighting factors are identified as the keywords. In another implementation, words or phrases with weighting factors that exceed a threshold weighting factor are identified as the keywords.
A user may be enabled to add or remove keywords for the selected category (1155). For example, the user may access the ontology engine with a client system, such as the client system 105 of
The ontology engine associates one or more of the identified keywords with the selected category (1160). In one implementation, the keywords are stored with the selected category in the query ontology, as is illustrated in
The ontology engine determines whether keywords have been identified for all categories included in the query ontology, or whether keywords need to be identified for more categories (1165). If so, then the ontology engine selects one of the categories for which keywords have not already been identified (1125), submits queries associated with the selected category to one or more search engines (1130), and receives search results for the submitted query (1135). Frequencies of word or phrase occurrence are determined (1140), and the frequencies are compared to previously determined frequencies of occurrence of words or phrases that appear in search results for the queries from the categories (1145). Based on the comparison, keywords for the selected category are identified (1150), modified by a user (1155), and associated with the selected category (1160). In this manner, keywords are identified sequentially for each category included in the query ontology, until keywords have been identified for all categories included in the query ontology, at which point the process 1100 is done (1170).
Referring to
The search interface identifies possible combinations of terms from a received query (1205). For example, if the received query includes three terms, the possible combinations may include the first term, the second term, the third term, the first and second terms, the second and third terms, and the first, second, and third terms. In this and typical implementations, the possible combinations of terms from the received query represent subsets of consecutive terms from the received query, and the order of the consecutive terms is maintained. Such implementations are advantageous because the order and location of the terms in the query typically affect the subject matter, and consequently the category, of the query. For example, for the query “wooden Venetian blind, the combination “Venetian blinds” may have more relevance to the meaning of the query than the combination “blind Venetian” or the combination “wooden blind.” Furthermore, limiting the number of allowable combinations of the query terms limits the number of categories that may correspond to the combinations, which may limit the number of information sources to which the search query is submitted. However, in other implementations, the possible combinations also may include subsets of nonconsecutive terms from the received query (for example, in the initial example of three terms, the first and third terms), and the terms in each of the possible combinations may be permuted to identify additional combinations. Identifying the possible combinations of terms of the received query may be referred to as n-gramming the received query.
The search interface identifies one or more categories corresponding to each of the possible combinations of the terms in an ontology (1210). The categories corresponding to each of the combinations may be identified in a manner similar to the process 410 of
The categories corresponding to the combinations of terms of the query may be filtered based on a determination of whether the categories may correspond to a single query (1215). For example, an indication of whether a subset of the categories has corresponded to a previously received query may be used to determine whether the categories should be filtered. Alternatively or additionally, a probability that a subset of the categories corresponds to a single query may be used to determine whether the categories should be filtered. The probability may be based on categories identified for previously received queries. For example, the combinations of terms from the query may correspond to three categories. The three categories together may not have corresponded to a previously received query, but two of the categories may have a high probability of both corresponding to a single query. As a result, the two categories may be identified as categories for the query, and the third category may be eliminated. Reducing the number of categories that correspond to the query may reduce the number of information sources to which the categories are submitted.
The search interface identifies one or more information sources associated with the identified categories that have not been eliminated (1220). The information sources represent domains from which a high percentage of search results for queries corresponding to the identified categories are identified. The information sources represent experts on the identified categories and all corresponding queries and keywords in general, rather than experts on any particular query associated with the identified categories (although a particular expert may provide expertise on both). In one implementation, the information sources are associated with the identified categories in the ontology, as illustrated in
The search interface submits the received query to the identified information sources (1225). Submitting the query to the identified information sources may include submitting the query to the identified information sources such that the information sources may identify search results for the query from the information sources. Submitting the query to the identified information sources also may include submitting the query to one or more search engines with an instruction to return search results from only the identified information sources. Submitting the query to the identified information sources increases the chances that search results retrieved for the query are representative of the category of the query. A high percentage of search results for queries from the categories corresponding to the query are identified from the identified information sources, so search results from the identified information sources are likely to be representative of the categories corresponding to the query.
Identifying information sources that correspond to one of the combinations of terms from the query as appropriate for the query eliminates the need to relate all possible queries to query categories. The number of possible queries prohibits identifying a category for each of the queries. Furthermore, the set of possible queries is constantly changing. However, the number of terms that may be used to construct queries allows for one or more categories to be identified for each of the terms, and the set of query terms is relatively fixed. Under the assumption that the categories of a query are the categories of terms of the query, such classification of query terms enables classification of an otherwise prohibitively large number of queries.
Submitting queries to a subset of the available search engines, instead of to all of the available search engines, may be advantageous because most of the available search engines may not provide desirable search results for each query. Furthermore, network resources are preserved because communication occurs only between a limited number of systems. In general, a smaller number of search engines to which a query is submitted corresponds to a larger amount of network resources that are preserved, so a small subset of search engines that return high quality search results may be used to preserve a large amount of network resources. In addition, identifying information sources for query categories may be better than identifying information sources for individual queries, or for individual query terms. This may be particularly true when the number of categories is significantly smaller than the number of individual queries. Maintaining indications of information sources for query categories instead of for individual queries or query terms reduces the storage space required for the indications of the information sources.
Referring to
The category identifiers 1320a-1320c indicate that the query entered in the text field 1305 is associated with multiple categories in the ontology 125. More particularly, the query is associated with a musicians category, as indicated by the category identifier 1320a, a birds category, as indicated by the category identifier 1320b, and a football category, as indicated by the category identifier 1320c. The search results 1315a-1315f may represent search results that were retrieved for the search query before the search query was disambiguated to correspond only to one of the multiple categories, for example, with the process 410 of
One of the category identifiers 1320a-1320c may be selected by the user to indicate that the corresponding category was intended for the search query. For example, the user may select the category identifier 1320a, 1320b, or 1320c to indicate that the musicians category, the birds category, or the football category, respectively, was intended for the query. The query then may be submitted to one or more information sources corresponding to the intended category such that the search results 1305a-1305f are retrieved from the information sources.
Referring to
Each of the search results 1330a-1330f has been retrieved from one of the information sources for which an information source indicator 1325a-1325j is displayed. Because the search results 1330a-1330f are retrieved from one or more of the information sources corresponding to the birds category, the search results 1330a-1330f are all representative of the birds category. Furthermore, selecting one of the information source indicators 1325a-1325j may cause search results only from the corresponding information source to be retrieved and displayed to the exclusion or apparent visual preference or relative order with respect to results from other of the sources, which further ensures that the search results are representative of the birds category in the above example.
After selection of the category identifier 1320b, the category identifiers 1320a and 1320c may be selected to retrieve search results for the query from information sources corresponding to the musicians category and the football category, respectively. Selecting one of the category identifiers 1320a and 1320c may cause one or more information source indicators for information sources corresponding to the selected category to be displayed. Each of the information source indicators may be selected to cause search results only from the corresponding information source to be retrieved and displayed.
In other implementations of the search tool user interface 1300 of
Referring to
The process 1400 begins when an ontology that relates queries to query categories is maintained and/or accessed (1405). For example, an ontology that is similar to the ontology 125 of
The ontology engine submits queries associated with categories included in the ontology to one or more search engines (1410). In one implementation, all queries included in the ontology are submitted to the one or more search engines. In another implementation, a particular number of queries from each of the categories included in the ontology are submitted to the one or more search engines. In general, any number of queries included in the ontology may be submitted, particularly if the submitted queries evenly represent the categories included in the ontology.
Furthermore, in some implementations, the queries may be submitted to all available search engines or to a subset of the available search engines. For example, the queries may be submitted to a general search engine from which many types of search results may be retrieved. Alternatively, the queries may be submitted to multiple search engines from which specialized types of search results may be retrieved. As another example, the queries may be submitted both to general and specialized search engines. In general, the queries may be submitted to any set of search engines, particularly if different types of search results may be retrieved evenly from the search engines. Search results are received from the search engines to which the queries were submitted (1415).
The ontology engine determines a frequency of occurrence in the received search results for each domain from which one of the received search results was retrieved (1420). Determining the frequency of occurrence for a domain may include determining a probability that one of the received search results was retrieved from the domain. Such a probability may be defined as the ratio of the number of the received search results that were retrieved from the domain to the number of the received search results. Alternatively, determining the frequency of occurrence for a domain may include determining a number of the received search results that were retrieved from the domain. In one implementation, the frequencies of occurrence for the domains from which the search results were retrieved may be determined using only a subset of the retrieved search results. For example, a particular number of the search results that most closely match each of the submitted queries may be used to determine the frequencies.
The determined frequencies of occurrence represent a base statistical model of domain frequency from a random or general collection of search results. The determined frequencies will be compared to frequencies determined for search results for queries from a particular category in the query ontology. Domains with higher frequencies in search results for queries from the particular category will be identified as expert domains for the particular category.
The ontology engine then selects a category from within the ontology (1425). The ontology engine submits queries associated with the selected category to one or more search engines (1430). Some or al of the queries associated with the selected category may be submitted to the one or more search engines. The queries may be submitted to the same search engines to which the queries from the categories were previously submitted. Search results for the submitted queries from the selected category are received from the one or more search engines (1435).
The ontology engine determines a frequency of occurrence in the search results received for the queries from the selected category for each domain from which one of the received search results was retrieved (1440). The frequencies may be determined in a manner similar to how the frequencies were previously determined using search results received for the queries included in the ontology.
For each domain from which one of the received search results was retrieved, the ontology engine compares the frequency of occurrence in the search results for the queries from the selected category to the frequency of occurrence in the search results for the queries from the categories (1445). In general, comparing the two frequencies for a particular domain indicates whether the particular domain occurs more frequently in the search results for the queries from the selected category. Comparing the two frequencies also may indicate whether the particular domain occurs with relatively equal frequency in both the search results for the queries from the selected category and the search result for the queries from the categories. Comparing the two frequencies may include identifying a weighting factor for the domain. The weighting factor indicates the relative difference between the two frequencies. A high weighting factor may indicate that the domain occurs more frequently in the search results for the queries from the selected category than in the search results for the queries from the categories. On the other hand, a low weighting factor may indicate that the domain does not occur more frequently in the search results for the queries from the selected category than in the search results for the queries from the categories.
Domains that appear more frequently in the search results for the queries from selected category of the query ontology are identified as expert domains for the selected category (1450). The identification of the expert domains may be based on the weighting factors of the domains that appear in the received search results. In one implementation, a particular number of domains with the highest weighting factors are identified as the expert domains. In another implementation, domains with weighting factors that exceed a threshold weighting factor are identified as the expert domains.
A user may be enabled to add or remove expert domains for the selected category (1455). For example, the user may access the ontology engine with a client system, such as the client system 105 of
The ontology engine associates one or more of the identified expert domains with the selected category (1460). In one implementation, the expert domains are stored with the selected category in the query ontology, as is illustrated in
The ontology engine determines whether expert domains have been identified for all categories included in the query ontology or whether expert domains need to be identified for more categories (1465). If so, then the ontology engine selects one of the categories for which expert domains have not already been identified (1425), submits queries associated with the selected category to one or more search engines (1430), and receives search results for the submitted query are received (1435). Frequencies of domain occurrence are determined (1440), and the frequencies are compared to previously determined frequencies of occurrence of domain that appear in search results for the queries from the categories (1445). Based on the comparison, expert domains for the selected category are identified (1450), modified by a user (1455), and associated with the selected category (1460). In this manner, expert domains are identified sequentially for each category included in the query ontology, until expert domains have been identified for all categories included in the query ontology, at which point the process 1400 is done (1470).
Referring to
The search interface receives surrogate representations of search results for a query from one or more search engines (1505). More particularly, the search interface receives a set of search results for the query from each of the one or more search engines. The search results in a set of search results may be ordered based on scores assigned by the search engine from which the set of search results was received. The query may have been submitted to the one or more search engines during the process 400 of
The surrogate representations of the search results are relatively short summaries or excerpts of the search results that may be presented in place of the search results themselves, thus enabling an overview of various search results to be perceived by a user concurrently. The surrogate representation of a search result may include a title of the search result, a short description or summary of the search result, an address from which the search result may be accessed, a hyperlink to the search result, a date on which the search result was created or modified, keywords that appear in the search result, and other metadata that describes the search result. The surrogate representations are presented to a user in place of the search results, and the user may select at least a portion of a surrogate representation of a search result to access the search result corresponding to the surrogate representation. In some implementations, portions of the surrogate representations, such as the dates and the keywords, may not be presented, but still may be considered when assigning scores.
The search interface assigns a score to each of the search results based on visual characteristics of the surrogate representations (1510). The score assigned to a search result may depend on the presence of the query in the surrogate representation of the search result. For example, the search result may be assigned a higher score when the query appears in the surrogate representation of the search result than when the query does not appear in the surrogate representation. The score assigned to a search result also may depend on a location of the query within the surrogate representation of the search result. For example, a higher score may be assigned to the search result when the query is included in the title of the surrogate representation than when the query is included in the description of the surrogate representation. Alternatively or additionally, the score assigned to a search result may depend on an amount of the query found in the surrogate representation of the search result. For example, a higher score may be assigned to the search result when the entire query is found in the surrogate representation than when only a portion of the query is found in the surrogate representation of the search result. The amount of the query found in the surrogate representation may be measured as a number of terms within the query that are found in the surrogate representation, or as a percentage of the terms within the query that are found in the surrogate representation.
The score assigned to a search result may depend on an amount of the surrogate representation of the search result, or of a component of the surrogate representation, reflecting terms from within the query. For example, a higher score may be assigned to the search result when the query occupies a larger portion of surrogate representation than when the query occupies a smaller portion of the surrogate representation of the search result. The amount of the surrogate representation, or of the component of the surrogate representation, that reflects query terms may be measured as a percentage of the words in the surrogate representation or the component thereof that are query terms. The score assigned to a search result also may depend on a distance between terms of the query in the surrogate representation of the search result. For example, a higher score may be assigned to the search result when the terms of the query appear uninterrupted in the surrogate representation than when one or more words are found between two of the terms of the query in the surrogate representation of the search result. The score assigned to a search result also may depend on an order of the terms of the query in the surrogate representation of the search result. For example, a higher score may be assigned to the search result when the order of the terms of the query is unchanged in the surrogate representation than when the order of the terms of the query is changed in the surrogate representation of the search result.
The score assigned to a search result also may depend on the date included the surrogate representation of the search result. For example, the score of the search result may correspond directly to the age of the search result, which may be indicated by the corresponding date. In some implementations, the score may be assigned to the search result based on a combination of the above-identified factors. In some implementations, the score identified for a search result based on the surrogate representation of the search result may be combined with a score assigned to the search result by the one or more search engines.
In one implementation, the score assigned to a search result may depend on more than one of the above factors. In such an implementation, a score may be assigned based on each of the factors, and weights may be used to combine the factor-specific scores into a single score for the search result. For example, a score of one may be assigned to the search result based on a first of the above described factors, and a score of two may be assigned based on a second of the above described factors. The first factor may have a weight of one, and the second factor may have a weight of two, so the score assigned to the search result may be the sum of the products of each of the factor-specific scores and the corresponding weight, which is five in the above example.
Weights also may be used when determining one of the factor specific scores. For example, a particular score may be assigned to a search result when the corresponding query appears in the surrogate representation of the search result. In addition, weights may be assigned to parts of the surrogate representation such that a higher score is assigned to the search result when the query is found in particular parts of the surrogate representation. For example, a weight of three may be assigned to the title of the surrogate representation, and a weight of one may be assigned to the description of the surrogate representation to indicate that the search result should be assigned a higher score when the query appears in the title than when the query appears in the description. The score assigned to the search result based on the presence of the query in the surrogate representation may be the product of the particular score assigned to the search result as a result of the query appearing in the surrogate representation and the weight of the part of the surrogate representation in which the query appears.
The search interface may order the search results based on the assigned scores (1515). Sorting the search results may include merging the received sets of search results into a single ordered list of search results. In one implementation, the search results may be ordered such that search results appear in order of decreasing score. The sorted search results may be presented to a user that submitted a query for which the search results have been identified. Alternatively, the search results may be processed further prior to presentation.
In some implementations, scores are assigned to the search results in one of the sets of search results such that the ordering of the search results within the set, which is based on scores assigned to the search results by the search engine from which the set of search results was received, is unchanged. For example, when a first search result was ordered above a second search result by a search engine that returned the first and second search results, scores are assigned to the first and second search results such that the first search result remains ordered above the second search result, even though visual characteristics of surrogate representations of the first and second search results may indicate that the second search result should be ordered above the first search result. In other words, the scores assigned to the search results that are based on the surrogate representations of the search results may be combined with the scores assigned to the search results by the search engine, with the scores assigned by the search engine being given a higher importance or weight in the overall score assigned to the search results. Assigning scores in such a manner is advantageous because the search engine may consider a wide array of information when scoring and ordering the search results, which results in the search engine being better suited to order the search results.
However, in implementations where the search results are received from multiple search engines, assigning scores to the search results after the search results are received ensures that the search results are scored consistently, regardless of the search engine from which the search result was retrieved. Therefore, the search results are merged based on consistent scoring, which may reduce bias towards or away from results from a particular search engine.
Scoring the search results based on the visual characteristics of the surrogate representations of the search results mimics user assessment of the relevance of the search results. Therefore, search results that a user would assess as very relevant would be assigned a high score, and search results that a user would assess as not very relevant would be assigned a low score. As a result, the search results that the user would assess as very relevant are presented first when the search results are ordered based on the assigned scores.
Referring to
The titles 1610a and 1610b are titles of the search results 1605a and 1605b. The titles 1610a and 1610b may be hyperlinks that may be selected to access the search results 1605a and 1605b. The descriptions 1615a and 1615b are excerpts from, or short summaries of, the search results 1605a and 1605b. The descriptions 1615a and 1615b may be specified to include one or more terms from the query. The addresses 1620a and 1620b identify locations from which the search results 1605a and 1650b may be accessed. The addresses 1620a and 1620b also may be hyperlinks that may be selected to access the search results 1605a and 1605b. The dates 1625a and 1625b may identify dates on which the search results 1605a and 1605b were first accessible, or were last modified.
The search result 1605a has been ordered before the search result 1605b based on scores that have been assigned to the search results 1605a and 1605b. The scores assigned to the search results 1605a and 1650b are based on visual characteristics of the surrogate representations of the search results 1605a and 1605b, as is described above with respect to the operation 1510 of the process 425 of
Referring to
The search interface chooses two adjacent search results from a set of search results to which scores have been assigned (1705). The scores may be assigned to the search results according to the process 425 of
The search interface determines a score differential between the two adjacent search results (1710). The score differential is the difference between the scores assigned to the two adjacent search results. The differential may be determined as an absolute score differential or as a relative score differential. For example, the score differential may be determined as a percentage of a maximum, minimum, or average score of the search results, as a percentage of the larger or the smaller of the scores of the two adjacent search results, as a percentage of a difference between the maximum and the minimum scores, or as a percentage of a difference between the scores of the two adjacent search results. The search interface determines whether the score differential is too large (1715). In one implementation, the score differential may be too large when the score differential exceeds a threshold differential. The threshold differential may be an absolute score differential or a relative score differential, such as a percentage of a maximum, minimum, or average score of the search results, as a percentage of a difference between the maximum and the minimum scores, a percentage of a difference between the scores identified for the two adjacent search results, or as a percentage of a standard deviation of the scores of the search results.
If the score differential is too large, then the search interface eliminates search results ordered below the lower ordered one of the two adjacent search results (1720). For example, in implementations where a large score is indicative of a high quality search result, search results with scores that are less than or equal to the smaller of the scores of the two adjacent search results may be eliminated. As another example, in implementations where a small score is indicative of a high quality search result, search results with scores that are greater than or equal to the larger of the scores of the two adjacent search results may be eliminated. A large score differential between a first search result and a second search result indicates a large difference in the qualities of the first and second search results. More particularly, the lower ordered adjacent search result is of a significantly lower quality than the higher ordered adjacent search result. The lower quality search result may not be useful to a user for which the search results were retrieved, as a result of being of the lower quality. Therefore, that search result, and other search results with even lower qualities, may be eliminated to prevent providing low quality search results to the user.
If the score differential is not too large, then the search interface determines whether more pairs of adjacent search results may be found within the search results (1725). If so, then the search interface chooses another pair of adjacent search results (1705), and the search results may be filtered based on the score differential between the chosen pair of adjacent search results (1710, 1715, 1720). In this manner, pairs of adjacent search results are sequentially processed to determine if search results should be eliminated based on score differentials of the pairs of adjacent search results.
The search interface also may eliminate search results with scores less than or equal to a minimum allowable score (1730). Search results with a score less than or equal to the minimum allowable score may be of a low quality. The low quality search results may not be useful to a user for which the search results were retrieved, as a result of being of the lower quality. Therefore, those search results may be eliminated to prevent providing low quality search results to the user.
The described systems, methods, and techniques may be implemented in digital electronic circuitry, computer hardware, firmware, software, or in combinations of these elements. Apparatus embodying these techniques may include appropriate input and output devices, a computer processor, and a computer program product tangibly embodied in a machine-readable storage device for execution by a programmable processor. A process embodying these techniques may be performed by a programmable processor executing a program of instructions to perform desired functions by operating on input data and generating appropriate output. The techniques may be implemented in one or more computer programs that are executable on a programmable system including at least one programmable processor coupled to receive data and instructions from, and to transmit data and instructions to, a data storage system, at least one input device, and at least one output device. Each computer program may be implemented in a high-level procedural or object-oriented programming language, or in assembly or machine language if desired; and in any case, the language may be a compiled or interpreted language. Suitable processors include, by way of example, both general and special purpose microprocessors. Generally, a processor will receive instructions and data from a read-only memory and/or a random access memory. Storage devices suitable for tangibly embodying computer program instructions and data include all forms of non-volatile memory, including by way of example semiconductor memory devices, such as Erasable Programmable Read-Only Memory (EPROM), Electrically Erasable Programmable Read-Only Memory (EEPROM), and flash memory devices; magnetic disks such as internal hard disks and removable disks; magneto-optical disks; and Compact Disc Read-Only Memory (CD-ROM). Any of the foregoing may be supplemented by, or incorporated in, specially-designed ASICs (application-specific integrated circuits).
It will be understood that various modifications may be made without departing from the spirit and scope of the claims. For example, advantageous results still could be achieved if steps of the disclosed techniques were performed in a different order and/or if components in the disclosed systems were combined in a different manner and/or replaced or supplemented by other components. Accordingly, other implementations are within the scope of the following claims.
Chowdhury, Abdur R., Pass, Gregory S., Campbell, Gerald Frederick
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